Stochastic Online Linear Regression: the Forward Algorithm to Replace Ridge

11/02/2021
by   Reda Ouhamma, et al.
7

We consider the problem of online linear regression in the stochastic setting. We derive high probability regret bounds for online ridge regression and the forward algorithm. This enables us to compare online regression algorithms more accurately and eliminate assumptions of bounded observations and predictions. Our study advocates for the use of the forward algorithm in lieu of ridge due to its enhanced bounds and robustness to the regularization parameter. Moreover, we explain how to integrate it in algorithms involving linear function approximation to remove a boundedness assumption without deteriorating theoretical bounds. We showcase this modification in linear bandit settings where it yields improved regret bounds. Last, we provide numerical experiments to illustrate our results and endorse our intuitions.

READ FULL TEXT
research
01/05/2011

Sparsity regret bounds for individual sequences in online linear regression

We consider the problem of online linear regression on arbitrary determi...
research
02/18/2023

Online Instrumental Variable Regression: Regret Analysis and Bandit Feedback

The independence of noise and covariates is a standard assumption in onl...
research
06/20/2019

Active Linear Regression

We consider the problem of active linear regression where a decision mak...
research
12/03/2020

Online Forgetting Process for Linear Regression Models

Motivated by the EU's "Right To Be Forgotten" regulation, we initiate a ...
research
05/29/2018

Uniform regret bounds over R^d for the sequential linear regression problem with the square loss

We consider the setting of online linear regression for arbitrary determ...
research
05/20/2011

Adaptive and Optimal Online Linear Regression on L1-balls

We consider the problem of online linear regression on individual sequen...
research
06/25/2020

Active Online Domain Adaptation

Online machine learning systems need to adapt to domain shifts. Meanwhil...

Please sign up or login with your details

Forgot password? Click here to reset